#  File src/library/stats/R/plot.lm.R
#  Part of the R package, http://www.R-project.org
#
#  This program is free software; you can redistribute it and/or modify
#  it under the terms of the GNU General Public License as published by
#  the Free Software Foundation; either version 2 of the License, or
#  (at your option) any later version.
#
#  This program is distributed in the hope that it will be useful,
#  but WITHOUT ANY WARRANTY; without even the implied warranty of
#  MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the
#  GNU General Public License for more details.
#
#  A copy of the GNU General Public License is available at
#  http://www.r-project.org/Licenses/

plot.lm <-
function (x, which = c(1L:3L,5L), ## was which = 1L:4L,
	  caption = list("Residuals vs Fitted", "Normal Q-Q",
	  "Scale-Location", "Cook's distance",
	  "Residuals vs Leverage",
	  expression("Cook's dist vs Leverage  " * h[ii] / (1 - h[ii]))),
	  panel = if(add.smooth) panel.smooth else points,
	  sub.caption = NULL, main = "",
	  ask = prod(par("mfcol")) < length(which) && dev.interactive(), ...,
	  id.n = 3, labels.id = names(residuals(x)), cex.id = 0.75,
	  qqline = TRUE, cook.levels = c(0.5, 1.0),
	  add.smooth = getOption("add.smooth"),
	  label.pos = c(4,2), cex.caption = 1)
{
    dropInf <- function(x, h) {
	if(any(isInf <- h >= 1.0)) {
	    warning("Not plotting observations with leverage one:\n  ",
		    paste(which(isInf), collapse=", "),
                    call.=FALSE)
	    x[isInf] <- NaN
	}
	x
    }

    if (!inherits(x, "lm"))
	stop("use only with \"lm\" objects")
    if(!is.numeric(which) || any(which < 1) || any(which > 6))
	stop("'which' must be in 1:6")
    isGlm <- inherits(x, "glm")
    show <- rep(FALSE, 6)
    show[which] <- TRUE
    r <- residuals(x)
    yh <- predict(x) # != fitted() for glm
    w <- weights(x)
    if(!is.null(w)) { # drop obs with zero wt: PR#6640
	wind <- w != 0
	r <- r[wind]
	yh <- yh[wind]
	w <- w[wind]
	labels.id <- labels.id[wind]
    }
    n <- length(r)
    if (any(show[2L:6L])) {
	s <- if (inherits(x, "rlm")) x$s
        else if(isGlm) sqrt(summary(x)$dispersion)
        else sqrt(deviance(x)/df.residual(x))
	hii <- lm.influence(x, do.coef = FALSE)$hat
	if (any(show[4L:6L])) {
	    cook <- if (isGlm) cooks.distance(x)
            else cooks.distance(x, sd = s, res = r)
	}
    }
    if (any(show[2L:3L])) {
	ylab23 <- if(isGlm) "Std. deviance resid." else "Standardized residuals"
	r.w <- if (is.null(w)) r else sqrt(w) * r
        ## NB: rs is already NaN if r=0, hii=1
	rs <- dropInf( r.w/(s * sqrt(1 - hii)), hii )
    }

    if (any(show[5L:6L])) { # using 'leverages'
        r.hat <- range(hii, na.rm = TRUE) # though should never have NA
        isConst.hat <- all(r.hat == 0) ||
            diff(r.hat) < 1e-10 * mean(hii, na.rm = TRUE)
    }
    if (any(show[c(1L, 3L)]))
	l.fit <- if (isGlm) "Predicted values" else "Fitted values"
    if (is.null(id.n))
	id.n <- 0
    else {
	id.n <- as.integer(id.n)
	if(id.n < 0L || id.n > n)
	    stop(gettextf("'id.n' must be in {1,..,%d}", n), domain = NA)
    }
    if(id.n > 0L) { ## label the largest residuals
	if(is.null(labels.id))
	    labels.id <- paste(1L:n)
	iid <- 1L:id.n
	show.r <- sort.list(abs(r), decreasing = TRUE)[iid]
	if(any(show[2L:3L]))
	    show.rs <- sort.list(abs(rs), decreasing = TRUE)[iid]
	text.id <- function(x, y, ind, adj.x = TRUE) {
	    labpos <-
                if(adj.x) label.pos[1+as.numeric(x > mean(range(x)))] else 3
	    text(x, y, labels.id[ind], cex = cex.id, xpd = TRUE,
		 pos = labpos, offset = 0.25)
	}
    }
    getCaption <- function(k) # allow caption = "" , plotmath etc
        if(length(caption) < k) NA_character_ else as.graphicsAnnot(caption[[k]])

    if(is.null(sub.caption)) { ## construct a default:
	cal <- x$call
	if (!is.na(m.f <- match("formula", names(cal)))) {
	    cal <- cal[c(1, m.f)]
	    names(cal)[2L] <- "" # drop	" formula = "
	}
	cc <- deparse(cal, 80) # (80, 75) are ``parameters''
	nc <- nchar(cc[1L], "c")
	abbr <- length(cc) > 1 || nc > 75
	sub.caption <-
	    if(abbr) paste(substr(cc[1L], 1L, min(75L, nc)), "...") else cc[1L]
    }
    one.fig <- prod(par("mfcol")) == 1
    if (ask) {
	oask <- devAskNewPage(TRUE)
	on.exit(devAskNewPage(oask))
    }
    ##---------- Do the individual plots : ----------
    if (show[1L]) {
	ylim <- range(r, na.rm=TRUE)
	if(id.n > 0)
	    ylim <- extendrange(r= ylim, f = 0.08)
	plot(yh, r, xlab = l.fit, ylab = "Residuals", main = main,
	     ylim = ylim, type = "n", ...)
	panel(yh, r, ...)
	if (one.fig)
	    title(sub = sub.caption, ...)
	mtext(getCaption(1), 3, 0.25, cex = cex.caption)
	if(id.n > 0) {
	    y.id <- r[show.r]
	    y.id[y.id < 0] <- y.id[y.id < 0] - strheight(" ")/3
	    text.id(yh[show.r], y.id, show.r)
	}
	abline(h = 0, lty = 3, col = "gray")
    }
    if (show[2L]) { ## Normal
	ylim <- range(rs, na.rm=TRUE)
	ylim[2L] <- ylim[2L] + diff(ylim) * 0.075
	qq <- qqnorm(rs, main = main, ylab = ylab23, ylim = ylim, ...)
	if (qqline) qqline(rs, lty = 3, col = "gray50")
	if (one.fig)
	    title(sub = sub.caption, ...)
	mtext(getCaption(2), 3, 0.25, cex = cex.caption)
	if(id.n > 0)
	    text.id(qq$x[show.rs], qq$y[show.rs], show.rs)
    }
    if (show[3L]) {
	sqrtabsr <- sqrt(abs(rs))
	ylim <- c(0, max(sqrtabsr, na.rm=TRUE))
	yl <- as.expression(substitute(sqrt(abs(YL)), list(YL=as.name(ylab23))))
	yhn0 <- if(is.null(w)) yh else yh[w!=0]
	plot(yhn0, sqrtabsr, xlab = l.fit, ylab = yl, main = main,
	     ylim = ylim, type = "n", ...)
	panel(yhn0, sqrtabsr, ...)
	if (one.fig)
	    title(sub = sub.caption, ...)
	mtext(getCaption(3), 3, 0.25, cex = cex.caption)
	if(id.n > 0)
	    text.id(yhn0[show.rs], sqrtabsr[show.rs], show.rs)
    }
    if (show[4L]) {
	if(id.n > 0) {
	    show.r <- order(-cook)[iid]# index of largest 'id.n' ones
	    ymx <- cook[show.r[1L]] * 1.075
	} else ymx <- max(cook, na.rm = TRUE)
	plot(cook, type = "h", ylim = c(0, ymx), main = main,
	     xlab = "Obs. number", ylab = "Cook's distance", ...)
	if (one.fig)
	    title(sub = sub.caption, ...)
	mtext(getCaption(4), 3, 0.25, cex = cex.caption)
	if(id.n > 0)
	    text.id(show.r, cook[show.r], show.r, adj.x=FALSE)
    }
    if (show[5L]) {
        ylab5 <- if (isGlm) "Std. Pearson resid." else "Standardized residuals"
        r.w <- residuals(x, "pearson")
        if(!is.null(w)) r.w <- r.w[wind] # drop 0-weight cases
 	rsp <- dropInf( r.w/(s * sqrt(1 - hii)), hii )
	ylim <- range(rsp, na.rm = TRUE)
	if (id.n > 0) {
	    ylim <- extendrange(r= ylim, f = 0.08)
	    show.rsp <- order(-cook)[iid]
	}
        do.plot <- TRUE
        if(isConst.hat) { ## leverages are all the same
	    if(missing(caption)) # set different default
		caption[[5]] <- "Constant Leverage:\n Residuals vs Factor Levels"
            ## plot against factor-level combinations instead
            aterms <- attributes(terms(x))
            ## classes w/o response
            dcl <- aterms$dataClasses[ -aterms$response ]
            facvars <- names(dcl)[dcl %in% c("factor", "ordered")]
            mf <- model.frame(x)[facvars]# better than x$model
            if(ncol(mf) > 0) {
                ## now re-order the factor levels *along* factor-effects
                ## using a "robust" method {not requiring dummy.coef}:
                effM <- mf
                for(j in seq_len(ncol(mf)))
                    effM[, j] <- sapply(split(yh, mf[, j]), mean)[mf[, j]]
                ord <- do.call(order, effM)
                dm <- data.matrix(mf)[ord, , drop = FALSE]
                ## #{levels} for each of the factors:
                nf <- length(nlev <- unlist(unname(lapply(x$xlevels, length))))
                ff <- if(nf == 1) 1 else rev(cumprod(c(1, nlev[nf:2])))
                facval <- ((dm-1) %*% ff)
                ## now reorder to the same order as the residuals
                facval[ord] <- facval
                xx <- facval # for use in do.plot section.

                plot(facval, rsp, xlim = c(-1/2, sum((nlev-1) * ff) + 1/2),
                     ylim = ylim, xaxt = "n",
                     main = main, xlab = "Factor Level Combinations",
                     ylab = ylab5, type = "n", ...)
                axis(1, at = ff[1L]*(1L:nlev[1L] - 1/2) - 1/2,
                     labels= x$xlevels[[1L]][order(sapply(split(yh,mf[,1]), mean))])
                mtext(paste(facvars[1L],":"), side = 1, line = 0.25, adj=-.05)
                abline(v = ff[1L]*(0:nlev[1L]) - 1/2, col="gray", lty="F4")
                panel(facval, rsp, ...)
                abline(h = 0, lty = 3, col = "gray")
            }
	    else { # no factors
		message("hat values (leverages) are all = ",
                        format(mean(r.hat)),
			"\n and there are no factor predictors; no plot no. 5")
                frame()
                do.plot <- FALSE
            }
        }
        else { ## Residual vs Leverage
            xx <- hii
            ## omit hatvalues of 1.
            xx[xx >= 1] <- NA

            plot(xx, rsp, xlim = c(0, max(xx, na.rm = TRUE)), ylim = ylim,
                 main = main, xlab = "Leverage", ylab = ylab5, type = "n",
                 ...)
            panel(xx, rsp, ...)
            abline(h = 0, v = 0, lty = 3, col = "gray")
            if (one.fig)
                title(sub = sub.caption, ...)
            if(length(cook.levels)) {
                p <- length(coef(x))
                usr <- par("usr")
                hh <- seq.int(min(r.hat[1L], r.hat[2L]/100), usr[2L],
                              length.out = 101)
                for(crit in cook.levels) {
                    cl.h <- sqrt(crit*p*(1-hh)/hh)
                    lines(hh, cl.h, lty = 2, col = 2)
                    lines(hh,-cl.h, lty = 2, col = 2)
                }
                legend("bottomleft", legend = "Cook's distance",
                       lty = 2, col = 2, bty = "n")
                xmax <- min(0.99, usr[2L])
                ymult <- sqrt(p*(1-xmax)/xmax)
                aty <- c(-sqrt(rev(cook.levels))*ymult,
                         sqrt(cook.levels)*ymult)
                axis(4, at = aty,
                     labels = paste(c(rev(cook.levels), cook.levels)),
                     mgp = c(.25,.25,0), las = 2, tck = 0,
                     cex.axis = cex.id, col.axis = 2)
            }
        } # if(const h_ii) .. else ..
	if (do.plot) {
	    mtext(getCaption(5), 3, 0.25, cex = cex.caption)
	    if (id.n > 0) {
		y.id <- rsp[show.rsp]
		y.id[y.id < 0] <- y.id[y.id < 0] - strheight(" ")/3
		text.id(xx[show.rsp], y.id, show.rsp)
	    }
	}
    }
    if (show[6L]) {
	g <- dropInf( hii/(1-hii), hii )
	ymx <- max(cook, na.rm = TRUE)*1.025
	plot(g, cook, xlim = c(0, max(g, na.rm=TRUE)), ylim = c(0, ymx),
	     main = main, ylab = "Cook's distance",
             xlab = expression("Leverage  " * h[ii]),
	     xaxt = "n", type = "n", ...)
	panel(g, cook, ...)
        ## Label axis with h_ii values
	athat <- pretty(hii)
	axis(1, at = athat/(1-athat), labels = paste(athat))
	if (one.fig)
	    title(sub = sub.caption, ...)
	p <- length(coef(x))
	bval <- pretty(sqrt(p*cook/g), 5)

	usr <- par("usr")
	xmax <- usr[2L]
	ymax <- usr[4L]
	for(i in seq_along(bval)) {
	    bi2 <- bval[i]^2
	    if(ymax > bi2*xmax) {
		xi <- xmax + strwidth(" ")/3
		yi <- bi2*xi
		abline(0, bi2, lty = 2)
		text(xi, yi, paste(bval[i]), adj = 0, xpd = TRUE)
	    } else {
		yi <- ymax - 1.5*strheight(" ")
		xi <- yi/bi2
		lines(c(0, xi), c(0, yi), lty = 2)
		text(xi, ymax-0.8*strheight(" "), paste(bval[i]),
		     adj = 0.5, xpd = TRUE)
	    }
	}

	## axis(4, at=p*cook.levels, labels=paste(c(rev(cook.levels), cook.levels)),
	##	mgp=c(.25,.25,0), las=2, tck=0, cex.axis=cex.id)
	mtext(getCaption(6), 3, 0.25, cex = cex.caption)
	if (id.n > 0) {
	    show.r <- order(-cook)[iid]
            text.id(g[show.r], cook[show.r], show.r)
        }
    }

    if (!one.fig && par("oma")[3L] >= 1)
	mtext(sub.caption, outer = TRUE, cex = 1.25)
    invisible()
}
